一种有效预测歌词毒性的机器学习技术

Nahiyan Bin Noor, Ishraq Ahmed
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引用次数: 1

摘要

人们普遍认为音乐是人类的通用语言,因为它可以在人们的生活中传播快乐和兴奋。音乐是一种在世界范围内受到高度重视的艺术形式。歌词在很多方面影响着我们的日常生活。在音乐行业,防止歌词有毒或不适合儿童的歌曲被复制是至关重要的。我们的情绪可能会受到特别有毒或无毒音乐的影响。如果推荐方法消除了毒性,听众的体验可能会得到改善。在这项研究中,我们使用机器学习(ML)算法将各种音乐流派和表演者的歌词分类为有毒或无毒。利用解毒模型,生成毒性评分,并根据评分将歌曲标记为有毒和无毒。研究表明,使用抒情数据集以及TF-IDF矢量化和逻辑回归、支持向量机和决策树集成作为算法的配置以94%的准确率超过了所有其他设计。这种分类将有助于音乐行业的权威和决策者根据标签对歌曲进行分类,并在歌曲描述中提及不适合儿童的内容,并制定防止歌曲毒性的指导方针。
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An Efficient Technique of Predicting Toxicity on Music Lyrics Machine Learning
It is widely accepted that music is humanity's universal language since it can spread happiness and excitement throughout people's lives. Music is a form of art that is highly regarded worldwide. There are many ways that music lyrics affect our daily lives. In the music industry, it is crucial to prevent the reproduction of songs whose lyrics are toxic or unsuitable for children. Our mood might be impacted by listening to particularly toxic or non-toxic music. The listener's experience might be enhanced if the recommendation method eliminates toxicity. In this study, we use machine learning (ML) algorithms to classify lyrics from various musical genres and performers as toxic or non-toxic. Utilizing the Detoxify model, the toxicity score was generated and labelled the songs as toxic and non-toxic based on the scores. The study demonstrates that the configuration using the lyric data set along with TF-IDF vectorization and Ensemble of Logistic Regression, Support Vector Machine and Decision Tree as an algorithm surpasses all other designs with 94% accuracy. This classification will help the authority and policymakers of music industries to categorize the song based on the label and mention in the song description which is not appropriate for the children and set guidelines to prevent toxicity via songs.
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